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Fully Convolutional Neural Networks for Newspaper Article Segmentation

机译:全卷积神经网络用于报纸文章细分

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Segmenting newspaper pages into articles that semantically belong together is a necessary prerequisite for article-based information retrieval on print media collections like e.g. archives and libraries. It is challenging due to vastly differing layouts of papers, various content types and different languages, but commercially very relevant for e.g. media monitoring. We present a semantic segmentation approach based on the visual appearance of each page. We apply a fully convolutional neural network (FCN) that we train in an end-to-end fashion to transform the input image into a segmentation mask in one pass. We show experimentally that the FCN performs very well: it outperforms a deep learning-based commercial solution by a large margin in terms of segmentation quality while in addition being computationally two orders of magnitude more efficient.
机译:将报纸页面分割成语义上属于在一起的文章,是在印刷媒体集(例如,例如,第2版)上基于文章的信息检索的必要先决条件。档案和图书馆。由于纸张布局,各种内容类型和不同语言的巨大差异,这具有挑战性,但在商业上与例如媒体监控。我们提出了一种基于每个页面外观的语义分割方法。我们应用了完全卷积神经网络(FCN),我们以端到端的方式对其进行了训练,以将输入图像一次转换为分割蒙版。我们通过实验证明了FCN的性能非常好:在细分质量方面,FCN的性能大大优于基于深度学习的商业解决方案,同时在计算效率上还高出两个数量级。

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